Faes Christel, Aerts Marc, Geys Helena, Molenberghs Geert
Center for Statistics, Hasselt University, Diepenbeek, Belgium.
Risk Anal. 2007 Feb;27(1):111-23. doi: 10.1111/j.1539-6924.2006.00863.x.
Quantitative risk assessment involves the determination of a safe level of exposure. Recent techniques use the estimated dose-response curve to estimate such a safe dose level. Although such methods have attractive features, a low-dose extrapolation is highly dependent on the model choice. Fractional polynomials, basically being a set of (generalized) linear models, are a nice extension of classical polynomials, providing the necessary flexibility to estimate the dose-response curve. Typically, one selects the best-fitting model in this set of polynomials and proceeds as if no model selection were carried out. We show that model averaging using a set of fractional polynomials reduces bias and has better precision in estimating a safe level of exposure (say, the benchmark dose), as compared to an estimator from the selected best model. To estimate a lower limit of this benchmark dose, an approximation of the variance of the model-averaged estimator, as proposed by Burnham and Anderson, can be used. However, this is a conservative method, often resulting in unrealistically low safe doses. Therefore, a bootstrap-based method to more accurately estimate the variance of the model averaged parameter is proposed.
定量风险评估涉及确定安全暴露水平。近期技术使用估计的剂量反应曲线来估计这样一个安全剂量水平。尽管这些方法具有吸引人的特征,但低剂量外推高度依赖于模型选择。分数多项式基本上是一组(广义)线性模型,是经典多项式的良好扩展,为估计剂量反应曲线提供了必要的灵活性。通常,人们在这组多项式中选择最佳拟合模型,并像没有进行模型选择一样继续进行。我们表明,与从所选最佳模型得到的估计器相比,使用一组分数多项式进行模型平均可减少偏差,并在估计安全暴露水平(例如基准剂量)时具有更好的精度。为了估计该基准剂量的下限,可以使用Burnham和Anderson提出的模型平均估计器方差的近似值。然而,这是一种保守方法,常常导致安全剂量低得不切实际。因此,提出了一种基于自助法的方法来更准确地估计模型平均参数的方差。